Tacit enables frontier labs to develop LLM capabilities for the
life sciences by collecting high quality data on how science is
done.
We imagine a future in which AI is a powerful tool for
scientific discovery, capable of helping us reason through
complex problems and driving optimal decision-making across
discovery and development pipelines.
Collaborating with biotechs and academic labs, we evaluate
models on high-value, real-world tasks and works with frontier
AI labs to systematically improve model performance on those
tasks. Data collection will focus on outcome-verifiable,
long-horizon planning and reasoning tasks to power the most
critical functions in the life sciences.
Tacit is supported by Alana Goyal at Basecase, Terrence Rohan at Otherwise, Soleio, Thomas Wolf (Hugging Face), Jonathan Frankle (MosaicML), Matthew Leavitt (Datology), Dan Shipper (Every), and others.